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Layered learning in mulitagent systems

机译:在法律学系统中解雇了

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Multiagent Systems is the emerging subfield of Artificial Intelligence that aims to provide both principles for construction of complex systems involving multiple agents and mechanisms for coordination of independent agents' behaviors. As of yet,there has been little work with Multiagent Systems that require real-time control in noisy environments. Because of the inherent complexity of this type of Multiagent System, Machine Learning is an interesting and promising area to merge with MultiagentSystems. Machine learning has the potential to provide robust mechanisms that leverage upon experience to equip agents with a large spectrum of behaviors, ranging from effective individual performance in a team, to collaborative achievement ofindependently and jointly set high-level goals in the presence of adversaries. Learning will also help agents adapt to unforeseen behaviors on the parts of other agents, through the use of on-line adaptive methods that may include explicit opponentmodelling.
机译:多元素系统是人工智能的新兴子领域,旨在为涉及多个代理的复杂系统和协调独立代理行为的机制提供两种原则。据呢,迄今为止,在嘈杂的环境中需要实时控制的多态系统很少。由于这种类型的多层系统的固有复杂性,机器学习是一个有趣和有希望的区域来与多元学系统合并。机器学习有可能提供强大的机制,利用经验以装备具有很大的行为的代理,从一支球队中的有效个人表现,相互依赖的协作成果,并在存在对手的情况下共同设定高级目标。学习还将通过使用可能包括明确的opponentModelling的在线自适应方法,帮助代理在其他代理人的部件上适应其他代理人的行为。

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